Publication | Open Access
A curated database reveals trends in single-cell transcriptomics
38
Citations
16
References
2019
Year
Unknown Venue
EngineeringGeneticsCurated DatabaseTranscriptomics TechnologyGenomicsBioinformatics DatabaseTrajectory AnalysisSingle Cell SequencingSingle-cell TranscriptomicsTranscriptomicsMolecular DiagnosticsRna SequencingTranslatomicsSingle-cell GenomicsOmicsBiological SystemsGene ExpressionSingle-cell AnalysisBioinformaticsFunctional GenomicsCell BiologySingle-cell BiologyComputational BiologyBiological DiscoverySystems BiologyMedicine
The more than 500 single-cell transcriptomics studies that have been published to date constitute a valuable and vast resource for biological discovery. While various “atlas” projects have collated some of the associated datasets, most questions related to specific tissue types, species, or other attributes of studies require identifying papers through manual and challenging literature search. To facilitate discovery with published single-cell transcriptomics data, we have assembled a near exhaustive, manually curated database of single-cell transcriptomics studies with key information: descriptions of the type of data and technologies used, along with descriptors of the biological systems studied. Additionally, the database contains summarized information about analysis in the papers, allowing for analysis of trends in the field. As an example, we show that the number of cell types identified in scRNA-seq studies is proportional to the number of cells analysed. The database is available at www.nxn.se/single-cell-studies/gui .
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